Automated Garbage Classification using Deep Learning

Sabitabrata Bhattacharya, Kanumala Bhargav Sai, H. S, Puvirajan, Hussain Peera, G. Jyothi
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Abstract

To lessen the mounting burden on landfills, recycling household and industrial waste has been suggested as a viable solution. However, effective waste management requires proper segregation of waste types as each category requires different treatment. The current segregation process involves manual sorting which can be time-consuming and Workforce-intensive. In this study, a novel approach using deep learning techniques was utilized to automatically classify waste based on its image into six distinct types: paper, metal, plastic, glass, trash and cardboard. CNN model was employed for the waste classification task.
使用深度学习的自动垃圾分类
为了减轻堆填区日益增加的负担,回收家庭和工业废物被认为是一个可行的解决方案。然而,有效的废物管理需要适当的废物分类,因为每一类废物需要不同的处理方法。目前的分离过程涉及人工分拣,这既耗时又需要大量人力。在这项研究中,利用深度学习技术的一种新方法,根据图像将垃圾自动分类为六种不同的类型:纸、金属、塑料、玻璃、垃圾和纸板。垃圾分类任务采用CNN模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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